首页> 外文期刊>Cancer: A Journal of the American Cancer Society >Correlative analysis of gene expression profile and prognosis in patients with gliomatosis cerebri.
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Correlative analysis of gene expression profile and prognosis in patients with gliomatosis cerebri.

机译:脑胶质瘤病患者基因表达谱与预后的相关性分析。

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BACKGROUND: In modern clinical neuro-oncology, the pathologic diagnoses are very challenging, creating significant clinical confusion and affecting therapeutic decisions and prognosis. METHODS: TP53 and PTEN gene sequences were analyzed, and microarray expression profiling was also performed. The authors investigated whether gene expression profiling, coupled with class prediction methodology, could be used to determine the prognosis of gliomatosis cerebri in a more consistent manner than standard pathology. RESULTS: The authors reported the results of a molecular study in 59 cases of gliomatosis cerebri, correlating these results with prognosis. The well-known prognostic factors of gliomas (ie, age, Karnofsky performance status, histology [grade 2 vs 3], and contrast enhancement) were found to be predictive of response or outcome in only a percentage of patients but not in all patients. The authors identified a 23-gene signature that was able to predict patient prognosis with microarray gene expression profiling. With the aim of producing a prognosis tool that is useful in clinical investigation, the authors studied the expression of this 23-gene signature by real-time quantitative polymerase chain reaction. Real-time expression values relative to these 23 gene features were used to build a prediction method able to distinguish patients with a good prognosis (those more likely to be responsive to therapy) from patients with a poor prognosis (those less likely to be responsive to therapy). CONCLUSIONS: The results of the current study demonstrated not only a strong association between gene expression patterns and patient survival, but also a robust replicability of these gene expression-based predictors.
机译:背景:在现代临床神经肿瘤学中,病理学诊断非常具有挑战性,造成明显的临床混乱并影响治疗决策和预后。方法:分析TP53和PTEN基因序列,并进行微阵列表达谱分析。作者调查了基因表达谱分析和分类预测方法是否可以比标准病理学更一致地用于确定脑胶质瘤的预后。结果:作者报告了一项针对59例脑胶质瘤病患者的分子研究结果,这些结果与预后相关。发现神经胶质瘤的众所周知的预后因素(即年龄,Karnofsky表现状态,组织学[2 vs 3级]和造影剂增强)仅可预测一部分患者的反应或结果,但不能预测所有患者。这组作者确定了一个23基因签名,可以通过微阵列基因表达谱预测患者的预后。为了产生一种可用于临床研究的预后工具,作者通过实时定量聚合酶链反应研究了该23基因签名的表达。使用相对于这23个基因特征的实时表达值来建立一种预测方法,该方法能够将预后良好(对治疗有反应的可能性较高)与预后较差(对治疗有反应的可能性较低)的患者区分开治疗)。结论:本研究的结果不仅证明了基因表达模式与患者生存之间的密切联系,而且还证明了这些基于基因表达的预测因子具有很强的可复制性。

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